Photonic integrated circuits offer a compact and stable platform for generating, manipulating, and detecting light. They are instrumental for classical and quantum applications. Imperfections stemming from fabrication constraints, tolerances and operation wavelength impose limitations on the accuracy and thus utility of current photonic integrated devices. Mitigating these imperfections typically necessitates a model of the underlying physical structure and the estimation of parameters that are challenging to access. Direct solutions are currently lacking for mesh configurations extending beyond trivial cases. We introduce a scalable and innovative method to characterize photonic chips through an iterative machine learning-assisted procedur...
Loss is a critical roadblock to achieving photonic quantum-enhanced technologies. We explore a modul...
Advanced photonic probing techniques are of great importance for the development of non-contact wafe...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
Photonic integrated circuits offer a compact and stable platform for generating, manipulating, and d...
Machine learning has opened a new realm of possibilities in photonic circuit design and manufacturin...
High performance and large-scale integration are driving the design of innovative photonic devices b...
Programmable feedforward photonic meshes of Mach-Zehnder interferometers are computational optical c...
The complexity of experimental quantum information processing devices is increasing rapidly, requiri...
We propose a deep learning model to reconstruct physical designs of complex coupled photonic systems...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
Recent years have seen an unprecedented growth of data traffic driven by a continuous increase of co...
The prediction and design of photonic features have traditionally been guided by theory-driven compu...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
We present a compact interferometer circuit to extract multiple model parameters of on-chip waveguid...
The performance and functionality of integrated photonic devices can be enhanced by using complex st...
Loss is a critical roadblock to achieving photonic quantum-enhanced technologies. We explore a modul...
Advanced photonic probing techniques are of great importance for the development of non-contact wafe...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...
Photonic integrated circuits offer a compact and stable platform for generating, manipulating, and d...
Machine learning has opened a new realm of possibilities in photonic circuit design and manufacturin...
High performance and large-scale integration are driving the design of innovative photonic devices b...
Programmable feedforward photonic meshes of Mach-Zehnder interferometers are computational optical c...
The complexity of experimental quantum information processing devices is increasing rapidly, requiri...
We propose a deep learning model to reconstruct physical designs of complex coupled photonic systems...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
Recent years have seen an unprecedented growth of data traffic driven by a continuous increase of co...
The prediction and design of photonic features have traditionally been guided by theory-driven compu...
Artificial neural networks are efficient computing platforms inspired by the brain. Such platforms c...
We present a compact interferometer circuit to extract multiple model parameters of on-chip waveguid...
The performance and functionality of integrated photonic devices can be enhanced by using complex st...
Loss is a critical roadblock to achieving photonic quantum-enhanced technologies. We explore a modul...
Advanced photonic probing techniques are of great importance for the development of non-contact wafe...
We propose and demonstrate the first end-to-end artificial neural network (ANN) modeler for the auto...